The UrbanFlood Common Information Space for Early Warning Systems
نویسندگان
چکیده
Early Warning Systems (EWS) can play a crucial role in mitigating the effects of natural disasters. Modern EWSs leverage wireless sensors for real-time monitoring of natural phenomena and computing-intensive scientific applications for scenario-based prediction and analysis of sensor data. This paper presents the UrbanFlood Common Information Space (CIS), a framework facilitating the creation, deployment and reliable operation of early warning systems. CIS proposes a reference architecture for EWS and provides services to address problems common to all EWSs as complex software systems: integration of legacy scientific applications, workflow orchestration, allocation of computational resources and robust operation. We demonstrate a flood early warning system created using the CIS technology and discuss the benefits of our approach which include shorter EWS development time, exposing EWS as a set of reusable services, platform independence and extensibility.
منابع مشابه
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